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Sosyoekonomi ISSN: 1305-5577
DOI: 10.17233/sosyoekonomi.289125
Date Submitted: 07.11.2016
Date Revised: 21.09.2017
Date Accepted: 20.10.2017 2017, Vol. 25(34), 187-196
Energy Consumption and Economic Growth Nexus in Selected Transition Economies: Quantile Panel-Type Analysis Approach1
Mahmut ZORTUK (http://orcid.org/0000-0002-1087-0339), Department of Econometrics, Dumlupınar
University, Turkey; e-mail: [email protected]
Semih KARACAN (http://orcid.org/0000-0002-2854-4144), Department of Econometrics, Dumlupınar
University, Turkey; e-mail: [email protected]
Noyan AYDIN (http://orcid.org/0000-0003-1711-6125), Department of Econometrics, Dumlupınar University,
Turkey; e-mail: [email protected]
Seçilmiş Geçiş Ekonomilerinde Enerji Tüketimi Ekonomik Büyüme İlişkisi:
Kantil Panel Tipi Analizi Yaklaşımı2
Abstract
In this study, impacts of energy consumption on economic growth is investigated for transition
economies case. For this purpose, Unconditional Panel Quantile regression (UQR) approach proposed
by Firpo, Fortin and Lemieux (2009) is applied, using panel data from 13 selected transition countries
between 1996 and 2014. Results show that the impact of energy consumption increases until the 40.
Quantile apart from the decrease between 10. to 20. quantiles and then starts to decrease rapidly. This
reverse U shaped change may be due to sectoral policy changes.
Keywords : Transition Countries, Energy Consumption, Economic Growth,
Unconditional Quantile Regression Analysis.
JEL Classification Codes : O40, Q43.
Öz
Bu çalışmada enerji tüketimi ve ekonomik büyüme arasındaki ilişki geçiş ekonomileri özelinde
incelenmiştir. Bu amaçla, Firpo, Fortin ve Lemieux (2009) tarafından önerilen Koşulsuz Kantil
Regresyon (KKR) yöntemi 13 seçilmiş geçiş ekonomisine ait 1996 - 2014 arası panel veri seti
kullanılarak uygulanmıştır. Sonuçlar enerji tüketiminin etkisinin 40. kantile kadar 10. ve 20. kantiller
arasındaki azalma hariç arttığını daha sonra ise hızla düştüğünü göstermektedir. Bu ters U şeklindeki
değişim sektörel politika değişikliklerinden kaynaklanıyor olabilir.
Anahtar Sözcükler : Geçiş Ülkeleri, Enerji Tüketimi, Ekonomik Büyüme, Koşulsuz Kantil
Regresyon Analizi.
1 This article is the revised and extended version of the paper presented in “Second International Annual Meeting
of Sosyoekonomi Society” which was held by Sosyoekonomi Society and CMEE - Center for Market Economics
and Entrepreneurship of Hacettepe University, in Amsterdam/The Netherlands, on October 28-29, 2016. 2 Bu makale Sosyoekonomi Derneği ile Hacettepe Üniversitesi Piyasa Ekonomisini ve Girişimciliği Geliştirme
Merkezi tarafından Hollanda’nın Amsterdam şehrinde, 28-29 Ekim 2016 tarihlerinde düzenlenen “İkinci
Uluslararası Sosyoekonomi Derneği Yıllık Buluşması”nda sunulan çalışmanın gözden geçirilmiş ve
genişletilmiş halidir.
Zortuk, M. & S. Karacan & N. Aydın (2017), “Energy Consumption and Economic Growth Nexus in Selected
Transition Economies: Quantile Panel-Type Analysis Approach”, Sosyoekonomi, Vol. 25(34), 187-196.
188
1. Introduction
Energy plays an important role in an economy, so the linkages between energy
consumption and economic development is widely researched in the literature. Yet, current
literature focuses on the general impact of energy consumption or the causality between two
and there is little to no evidence on how does it changes among different quantiles of
economic development. Even though transition countries had to overcome similar problems
and applied likewise policies in the process, today they are totally different in every means.
Furthermore, they are in the different phases of transition to free market economy. Therefore,
we believe that their differences should be investigated carefully and a better suited
framework should be used for analysis.
In order to show the effect of energy consumption on economic growth in different
levels of economic development, unconditional quantile regression (UQR) approach
proposed by Firpo, Fortin and Lemieux (2009) is chosen in this study since traditional
quantile regression estimates the relationship between energy consumption and economic
development at different quantiles of the conditional development distribution and it is
inappropriate for comparing impacts of different quantiles against each other as described
in the following sections.
The aim of this paper is to analyze the relationship between energy consumption and
economic growth in 13 selected transition countries for the period of 1996-2014 by using
Unconditional Quantile Regression Approach to highlight the differences among different
quantiles. This paper proceeds as follows: the next section briefly reviews the previous
studies. In the section after, data and the models are given. The fourth section presents the
methodology and empirical results. Finally, conclusions are presented.
2. Literature Review
In the past three decades, numerous studies have been conducted to examine the links
between energy consumption and economic growth. Kraft & Kraft (1978)’s pioneering study
on the topic found one-way causality flowing from growth to energy consumption for USA
over 1947 - 1978 period by using Sims - Granger methodology.
Dergiades et al. (2013) examined the linear and non-linear causality between energy
consumption and economic growth in Greece for the period 1960-2008. The empirical
results reveal that there is a significant one-way both linear and non-linear causality from
total useful energy to economic growth. Ouedraogo (2013) investigated the the long-term
relationship between energy access and economic development for 15 African countries for
the period between 1980 - 2008 by using recently developed panel co-integration techniques.
The results show that GDP and energy consumption move together in the long term.
Baranzini et al. (2013) investigated the linkages between energy consumption and economic
development in Switzerland over the period of 1950-2010 by using bounds testing
techniques to different energy types. The results show that there is robust long-term one-
way causality from real GDP to transport fuel, heating oil and electricity consumption.
Zortuk, M. & S. Karacan & N. Aydın (2017), “Energy Consumption and Economic Growth Nexus in Selected
Transition Economies: Quantile Panel-Type Analysis Approach”, Sosyoekonomi, Vol. 25(34), 187-196.
189
Fuinhas et al. (2012) analyzed the relationship between economic growth and
primary energy consumption in Spain, Greece, Italy, Portugal and Turkey over the period of
1965-2009 by using ARDL bounds test approach. The findings show that there is two-way
causality between economic growth and primary energy consumption in the both long and
short term, hence they imply that the feedback hypothesis is valid for the sample. Belke et
al. (2011) examined the nexus between real GDP and energy consumption for 25 OECD
countries in the period of 1981-2007. They included energy prices to their study as a control
variable and estimated a trivariate model. Their findings assert that all variables are co-
integrated. Furthermore, causality tests show that there is two-way causality between energy
consumption and economic growth in the long term. Shahiduzzaman (2012) investigated the
causality between energy consumption and economic output in Australia over the 1960-2009
period, using Granger causality, VECM approach and Toda-Yamamoto tests. They found
two-way causality between energy usage and GDP. Results show that energy is an important
variable for Australian production sector. Lee & Chang (2005) examined the relationship
between GDP, total energy consumption and consumption of oil, gas, electricity and coal as
its components for Taiwan, over the period 1954 - 2003 by using unit root and the co-
integration tests which allow structural breaks. According to their findings, there is two-way
causality between GDP and total energy and coal consumption and one-way causality from
oil, gas and electricity consumption to GDP. Consequently they assert that the energy plays
an essential role for Taiwan economy.
Yıldırım et al. (2014) studied the causality between economic growth and energy
consumption in 11 countries by using bootstrapped autoregressive metric causality method
and Toda-Yamamoto procedure. The findings reveal that there is no causality between
energy consumption and economic growth in Korea, Indonesia, Egypt, Pakistan, Philippines,
Mexico, Bangladesh and Iran while there is one-way causality from energy consumption to
economic growth. They also argued that Turkish economy is dependent to energy
consumption. Zortuk & Karacan (2016) investigated the same case for 17 transition
countries, using bootstrap panel causality analysis and found that there is no causality
between two variables in general, they further argued that because of inefficient
infrastructure in some countries energy use has negative effects on economic growth in some
countries.
Cheng et al. (1998) examined the multivariate causality between energy consumption
and employment taking enviromental implications in U.S. as a control variable. Results
show that there is no causality from energy consumption to employment. Asafu-Adjaye
(2000) investigated the relationship between energy consumption and income for India,
Indonesia, the Philippines and Thailand by using co-integration and ECM techniques.
According to their findings, there is one-way Granger causality from energy to income for
India and Indonesia and two-way Granger causality for Thailand and Philippines in the short
term, while there is no causality between these in the long term.
Akkemik et al. (2012) examined the causality relationship between energy
consumption and GDP for a heterogeneous panel dataset consisting of 79 countries over
1980-2007 period by using Granger causality. They demonstrated that there is causality
Zortuk, M. & S. Karacan & N. Aydın (2017), “Energy Consumption and Economic Growth Nexus in Selected
Transition Economies: Quantile Panel-Type Analysis Approach”, Sosyoekonomi, Vol. 25(34), 187-196.
190
relationship between these variables. Moreover, panel causality tests show that two-way
causality is observed in 57 out of 79 countries, one-way causality is observed in 7 out of 79
countries and no causality is observed in 15 out of 79 countries. Hu & Lin (2008) examined
non-linear long-term equilibrium relationship between GDP and energy consumption for
Taiwan data over the period of 1982:1-2006:4 by using threshold co-integration test. The
threshold co-integration test justifies that there is a long-term relationship between these
variables.
Table: 1
Related Literature Authors Method Data Result
Glasure & Lee
(1997) Co-integration and Error-correction models
South Korea and Singapore
(1961-1990)
-No co-integration for South Korea
-Enery Consumption→Income for Singapore
Cheng and Lai
(1997) Hsiao’s Granger causality
Taiwan
(1955-1993) Economic Growth→Energy Consumption
Cheng et al.
(1998) Hsiaso’s version of Granger causality U.S. No co-integration
Asafu-Adjaye
(2000) Co-integration and Error-correction models
India, Indonesia, the
Philippines and Thailand No co-integration
Chang et al.
(2001) Vector Error-correction models Taiwan
-Employment↔Output
-Employment↔Energy consumption,
-Energy consumption → Output
Soytas and Sari
(2003) Vector-Error correction models G-7 Countries
-Economic Growth↔Eenergy Consumption in
Argentina
-Economic Growth→Eenergy Consumption in
Italy and Korea
-Enery Consumption → Economic Growth in Turkey,
France, Germany and
Japan
Fatai et al.
(2004) Error-correction models
Australia, India,
Philippines, Thailand,
Indonesia and New
Zealand
(1960-1999)
- Enery Consumption → Economic Growth in India
and Indonesia
- Enery Consumption ↔ Economic Growth in
Thailand and The Philippines
Lee & Chang
(2007) Co-integration test for structural breaks
Taiwan
(1954-2003) Enery Consumption → Economic Growth
Hou
(2009) Hsiao’s Granger causality China -Economic Growth↔Eenergy Consumption
Payne
(2009) Toda-Yamamoto causality tests
U.S.
(1949-2006)
No co-integration
Lee & Chien
(2010) Toda Yamamoto (1995) Granger causality
G-7 Countries
(1960-2001)
Energy consumption → income in Canada, Italy and
the UK
Economic growth → energy consumption in France
and Japan
No causality in Germany and U.S.
Belke et al.
(2011) Dynamic OLS and ECM model
25 OECD countries
(1981 - 2007) Energy consumption ↔ Economic growth
Fuinhas et al.
(2012) ARDL bounds test approach
Spain, Greece, Italy,
Portugal and Turkey
(1965-2009)
Energy consumption ↔ Economic growth
Shahiduzzaman
(2012)
Granger causality, VECM approach and
Toda-Yamamoto tests
Australia
(1960-2009) Energy consumption → Economic growth
Shaari et al.
(2013) Granger causality Malaysia
One-way causality
EC→EG
Dergiades et al.
(2013)
Granger causality and Non-linear causality
test
Greece
(1960-2008) Total useful energy → economic growth
Ouedraogo
(2013) Panel co-integration techniques
15 African countries
(1980-2008) GDP → Energy consumption
Baranzini et al.
(2013) Bounds testing techniques
Switzerland
(1950-2010)
-Real GDP → Transport fuel
-Real GDP → Heating oil
-Real GDP → Electricity consumption
Yıldırım et al.
(2014)
Bootstrapped autoregressive metric
causality approach and Toda-Yamamoto
procedure
Next 11 countries
(1971-2010)
-No co-integration in Bangladesh, Korea, Indonesia,
Egypt, Pakistan, Philippines, Mexico and Iran
Energy consumption → Economic growth in Turkey
Note: “X→Y” indicates causality from X to Y and “X←Y” indicates causality Y to X.
Zortuk, M. & S. Karacan & N. Aydın (2017), “Energy Consumption and Economic Growth Nexus in Selected
Transition Economies: Quantile Panel-Type Analysis Approach”, Sosyoekonomi, Vol. 25(34), 187-196.
191
Table (1) shows that Granger causality test, Toda - Yamamoto procedure, Hsiao’s
version of Granger causality, vector error-correction model and co-integration tests are
popular in energy - growth literature.
3. Data and Model
The aim of this paper is to investigate the relationship between Energy consumption
and GDP per Capita in 13 selected transition countries for 1996-2014 period. The Energy
consumption (LEC) variable is represented by energy consumption (kg of oil equivalent per
capita) (Source: World Development Indicators) and economic growth (LGDP) is
represented by the growth in GDP per Capita (per capita, PPP constant 2005 international
$) (Source: WDI). All variables are transformed to their logarithmic forms and denoted as
follows:
[LGDP: Gross Domestic Product per Capita and LEC: Energy consumption]
Table: 2
Descriptive Statistics LGDP LEC
𝑀𝑖𝑛. 𝑀𝑎𝑥. 𝑀𝑒𝑎𝑛 𝑆𝐷 𝑀𝑖𝑛. 𝑀𝑎𝑥. 𝑀𝑒𝑎𝑛 𝑆𝐷
Albania 8.960 8.108 8.568 0.274 6.521 5.895 6.333 0.206
Belarus 9.333 8.373 8.910 0.345 7.999 7.787 7.884 0.076
Czech Republic 10.100 9.701 9.855 0.152 8.405 8.241 8.338 0.041
Croatia 9.757 9.298 9.539 0.155 7.650 7.384 7.540 0.076
Hungary 9.792 9.369 9.649 0.146 7.913 7.803 7.850 0.035
Latvia 9.696 8.877 9.281 0.298 7.653 7.386 7.528 0.081
Lithuania 9.775 8.965 9.403 0.270 7.949 7.619 7.859 0.095
Slovak Republic 9.923 9.354 9.622 0.202 8.159 8.035 8.118 0.033
Slovenia 10.211 9.715 9.982 0.155 8.250 8.064 8.145 0.054
Romania 9.360 8.808 9.054 0.197 7.654 7.386 7.489 0.078
Bulgaria 9.391 8.729 9.053 0.240 7.918 7.707 7.710 0.059
Poland 9.762 9.164 9.442 0.187 7.893 7.748 7.813 0.048
Estonia 9.885 9.051 9.562 0.262 8.340 8.143 8.241 0.067
All 10.211 8.108 9.371 0.441 8.405 5.895 7.764 0.496
Data Source: World Bank Development Indicators 2016.
Transition countries included in this study are namely Albania, Belarus, Czech
Republic, Croatia, Hungary, Latvia, Lithuania, Slovak Republic, Slovenia, Romania,
Bulgaria, Poland and Estonia. Mentioned data set is an unbalanced panel with a total of 208
observations. Table (2) reports the summary statistics of the variables by country.
The model which defines the long-term relationship between real GDP per Capita
and energy consumption is as follows:
𝐿𝐺𝐷𝑃𝑖𝑡 = 𝛼𝑖 + 𝛽𝑖𝐿𝐸𝐶𝑖𝑡 + 𝜀𝑖𝑡 (1)
In equation (1), i symbolizes countries as 𝑖 = 1, … . , 𝑁 and t represents time as 𝑡 =1, … . , 𝑇. 𝛼𝑖 coefficient is autonomous and 𝛽𝑖 is long-term elasticity coefficient.
Zortuk, M. & S. Karacan & N. Aydın (2017), “Energy Consumption and Economic Growth Nexus in Selected
Transition Economies: Quantile Panel-Type Analysis Approach”, Sosyoekonomi, Vol. 25(34), 187-196.
192
4. Econometric Methodology and Empirical Results
In this paper, emprical anaylses consist of three stages. Firstly, cross correlation
between individual countries is investigated by Pesaran CD test. Pesaran CD test has the
necessary sample size properties when 𝑇 exceeds 𝑁, as is case in this study. Test statistics
for Pesaran CD is given by equation (2):
𝐶𝐷 = √2𝑇
𝑁(𝑁−1)∑ ∑ �̂�𝑖𝑗
𝑁𝑗=𝑖+1
𝑁−1𝑖=1 (2)
where �̂� is estimated pairwise correlation of the residuals. Testing cross-section dependence
has a particular importance since transition countries have common geographical, economic
and political properties.
Second, Pesaran CADF unit root test is applied to data. Pesaran CADF test is one of
the so called second generation unit root tests which allow cross correlation among
individiuals. Developed by Pesaran (2004), CADF test is basicly the cross-sectionally
weighted form of the Im et al. (2003). CIPS test statistic for CADF test is given by equation
(3):
𝐶𝐼𝑃𝑆 =1
𝑁∑ 𝑡𝑖(𝑁, 𝑇)𝑁
𝑖=1 (3)
Finally, equation (1) is estimated by unconditional quantile regression (UQR)
estimators. After replacing dependent variable with recentered inflation function (RIF)
proposed by Firpo, Fortin and Lemieux (2009), UQR can be estimated by any estimator. RIF
is given by equation (4):
𝑅𝐼𝐹(𝑌; 𝑞𝜏, 𝐹𝑌) = 𝑞𝜏 +𝜏−𝕝{𝑌≤𝑞𝜏}
𝑓𝑌(𝑞𝜏) (4)
where 𝑞𝜏 is the value of the dependent variable (𝑌) at the 𝜏. quantile. 𝐹𝑌 is the 𝐶𝐷𝐹 of 𝑌 and
𝑓𝑌(𝑞𝜏) is the density of dependent variable at 𝑞𝜏. In UQR quantiles are defined preregression,
thus the model is not influenced by independent variables and elasticities can be investigated
on unconditional quantiles (Borgen, 2016). UQR further gives the opportunity to compare
coefficients estimated in different quantiles (Firpo, Fortin and Lemieux, 2009).
Table: 3
Pesaran CD test for the cross-sectional dependence in error terms Test statistics Prob.
𝑳𝑬𝑪 𝑳𝑮𝑫𝑷
30.593
37.071
0.000*
0.000*
Note: * and ** indicate significance at the 1% and 5% respectively.
Since cross-sections are dependent, traditional panel unit root tests are inapropriate.
Instead, we perform Pesaran (2007) Cross-Sectionally Augmented IPS (CADF) test. CADF
allows cross-sectional dependence by assuming that the variables can be specified by a joint
factor.
Zortuk, M. & S. Karacan & N. Aydın (2017), “Energy Consumption and Economic Growth Nexus in Selected
Transition Economies: Quantile Panel-Type Analysis Approach”, Sosyoekonomi, Vol. 25(34), 187-196.
193
Table: 4
Second generation panel unit root test Pesaran CIPS Prob.
𝑳𝑬𝑪 𝑳𝑮𝑫𝑷
-2.26
-2.78
0.000*
0.002*
Note: * and ** indicate significance at the 1% and 5% respectively.
According to table (4), LGDP and LEC series are stationary at levels, therefore it is
possible to estimate long-run elasticities. Nevertheless, both the 𝐿𝐺𝐷𝑃 and 𝐿𝐸𝐶 are haunted
by cross-sectional dependence, thus standard errors estimated with Gaussian assumptions
will be biased. For this purpose, we have reported cluster bootstrapped standard errors too.
Bootstrapped standard errors are robust against cross-sectional dependence (Konya, 2006).
Table (5) shows coefficient estimations along with the cluster-robust standard errors, which
relaxes 𝑖. 𝑖. 𝑑 assumption on the error term (Borgen, 2016) and cluster bootstrapped standard
errors.
Table: 5
Unconditional Quantile Regression Results Quantiles Var. Coeff. Robust SE Prob. C. Bootstrap SE C. Bootstrap P. F
Q(10) LEC 2.092 0.701 0.011* 0.661 0.002*
11.99** c -8.04 5.757 0.187 5.523 0.147
Q(20) LEC 1.471 0.913 0.133 0.816 0.073***
11.56** c 2.225 7.491 0.722 6.752 0.687
Q(30) LEC 1.581 0.867 0.093*** 0.802 0.05**
8.35** c -3.38 7.106 0.642 6.612 0.609
Q(40) LEC 1.611 0.832 0.077*** 0.653 0.014**
10.36** c -3.544 6.82 0.613 5.427 0.514
Q(50) LEC 1.419 0.749 0.082*** 0.554 0.011**
13.74** c -1.848 6.142 0.769 4.618 0.689
Q(60) LEC 1.183 0.635 0.087*** 0.483 0.015**
9.98** c 0.205 5.205 0.969 4.033 0.959
Q(70) LEC 0.965 0.528 0.093*** 0.442 0.03**
6.1** c 2.07 4.334 0.641 3.69 0.575
Q(80) LEC 0.687 0.427 0.134 0.348 0.049**
4.52** c 4.41 3.503 0.231 2.894 0.128
Q(90) LEC 0.393 0.28 0.186 0.211 0.065***
5.38** c 6.95 2.297 0.011** 1.756 0.000*
Note: *, ** and *** indicate significance at 1%, 5% and 10% respectively.
Differences between robust standard errors and cluster bootstrapped standard errors
are arising from cross-sectional dependence. As it can be seen, robust standard errors are
upward biased. According to table (5), in the lower quantiles 𝐿𝐸𝐶 has more effect on 𝐿𝐺𝐷𝑃
(particularly in 10. quantile, which is an outlier), yet starting from median quantile this effect
dramatically diminishes.
Zortuk, M. & S. Karacan & N. Aydın (2017), “Energy Consumption and Economic Growth Nexus in Selected
Transition Economies: Quantile Panel-Type Analysis Approach”, Sosyoekonomi, Vol. 25(34), 187-196.
194
Graph: 1
Coefficient Changes Across Different Quantiles
Scatter plots in Graph (1) show the reverse 𝑈 shaped effect of 𝐿𝐸𝐶 on 𝐿𝐺𝐷𝑃 with
the increasing quantiles. We have further estimated a LOESS regression to better illustrate
the case. While least squares estimators are used for the Gaussian estimation, M-Estimator
is used for the Symmetric. Nevertheless, estimated curves are heavily effected by 10.
quantile and regression estimations are not able to fully capture the increasing effect at the
lower quantiles.
5. Conclusion
This article, containing data from 13 selected transition countries for the period
between 1996 and 2014, is an attempt to investigate the relationship between energy
consumption and economic growth. In order to shed light onto the nexus, cross-section
dependence is investigated at first. Since cross-section independence assumption is violated,
unit root properties of GDP per Capita and energy consumption series are investigated with
a second generation unit root test which allows cross correlation among individual countries.
Following unit root tests, unconditional quantile regression approach is applied to model (1)
and coefficients are estimated in order to interpret the relationship between GDP per Capita
and energy consumption. UQR is a handy tool for investigating the variation across the
unconditional income distribution and compare different levels of GDP per Capita.
Estimation results shows that income elasticity first increases and then decreases
progressively. Graph (1) points out where this conversion starts and how it affects as the
income increases. This could be due to sectoral policies since less developed countries
generally focus on energy heavy industrial sectors and more developed countries focus on
Zortuk, M. & S. Karacan & N. Aydın (2017), “Energy Consumption and Economic Growth Nexus in Selected
Transition Economies: Quantile Panel-Type Analysis Approach”, Sosyoekonomi, Vol. 25(34), 187-196.
195
service and financial sectors. Furthermore, individual and public energy consumption, which
has no positive effects on production tends to increase in more developed countries.
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